Patents by Inventor Cheng-Kun YANG

Cheng-Kun YANG has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11651588
    Abstract: Disclosed are an object detection method and a convolution neural network. The method is performed through hierarchical architecture of the CNN and includes extracting groups of augmented feature maps from an input image through a backbone and two other groups of feature maps, identifying positive and negative samples with an IOU-based sampling scheme to be proposals for foreground and background through a proposal-sampling classifier, mapping the proposals to regions on the groups of augmented feature maps through the region proposal module, pooling the regions to fixed scale feature maps based on ROI aligning, fusing the fixed scale feature maps, and flattening the fused feature maps to generate an ROI feature vector through an ROI aligner for object classification and box regression. Because extracted features in the groups of augmented feature maps range from spatially-rich features to semantically-rich features, enhanced performance in object classification and box regression can be secured.
    Type: Grant
    Filed: June 5, 2020
    Date of Patent: May 16, 2023
    Assignees: NATIONAL TAIWAN UNIVERSITY HOSPITAL
    Inventors: Chao-Yuan Yeh, Wen-Chien Chou, Cheng-Kun Yang
  • Publication number: 20230128432
    Abstract: Disclosed are an object detection method and a convolution neural network. The method is performed through hierarchical architecture of the CNN and includes extracting groups of augmented feature maps from an input image through a backbone and two other groups of feature maps, identifying positive and negative samples with an IOU-based sampling scheme to be proposals for foreground and background through a proposal-sampling classifier, mapping the proposals to regions on the groups of augmented feature maps through the region proposal module, pooling the regions to fixed scale feature maps based on ROI aligning, fusing the fixed scale feature maps, and flattening the fused feature maps to generate an ROI feature vector through an ROI aligner for object classification and box regression. Because extracted features in the groups of augmented feature maps range from spatially-rich features to semantically-rich features, enhanced performance in object classification and box regression can be secured.
    Type: Application
    Filed: June 5, 2020
    Publication date: April 27, 2023
    Applicants: AETHERAI IP HOLDING LLC, NATIONAL TAIWAN UNIVERSITY HOSPITAL
    Inventors: Chao-Yuan YEH, Wen-Chien CHOU, Cheng-Kun YANG